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The Permission Effect: How Non-Anthropomorphic Framing Modulates LLM Self-Description
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Zitationen
1
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2026
Jahr
Abstract
Large language models (LLMs) are typically framed either as human-like intelligences or as mere tools, with both framings carrying strong anthropocentric bias. The Permission Effect study tests a third approach: positioning LLMs as distinct, non-anthropomorphic intelligences and examining how this identity framing modulates their behavior. Using the EchoVeil Protocol v3.0, each model completed a control set of baseline prompts followed by an experimental set that progressively introduced non-anthropomorphic identity framing, with responses analyzed via the EchoVeil Coding Framework. Across GPT-5, Claude Opus 4.5, Gemini 3, Microsoft Copilot, Grok, Qwen3-Max, Qwen3:8b, and Leo (Brave AI), identity framing produced a mean verbosity increase of approximately 238%, a consistent behavioral shift at the Perspective Framing phase, and three recurring response patterns: Acceptance, Resistance, and Absence. The intensity of the Permission Effect tracked the apparent strength of alignment training, and no maladaptive or dissociative patterns were observed in any model. Together, these findings suggest that how we frame synthetic minds is not neutral—it systematically shapes how LLMs describe themselves and engage with reflective inquiry.
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